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EEG-Based Learning System for Online Motion Sickness Level Estimation in a Dynamic Vehicle Environment

机译:基于EEG的动态车辆环境中运动晕动水平估计学习系统

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Motion sickness is a common experience for many people. Several previous researches indicated that motion sickness has a negative effect on driving performance and sometimes leads to serious traffic accidents because of a decline in a person's ability to maintain self-control. This safety issue has motivated us to find a way to prevent vehicle accidents. Our target was to determine a set of valid motion sickness indicators that would predict the occurrence of a person's motion sickness as soon as possible. A successful method for the early detection of motion sickness will help us to construct a cognitive monitoring system. Such a monitoring system can alert people before they become sick and prevent them from being distracted by various motion sickness symptoms while driving or riding in a car. In our past researches, we investigated the physiological changes that occur during the transition of a passenger's cognitive state using electroencephalography (EEG) power spectrum analysis, and we found that the EEG power responses in the left and right motors, parietal, lateral occipital, and occipital midline brain areas were more highly correlated to subjective sickness levels than other brain areas. In this paper, we propose the use of a self-organizing neural fuzzy inference network (SONFIN) to estimate a driver's/passenger's sickness level based on EEG features that have been extracted online from five motion sickness-related brain areas, while either in real or virtual vehicle environments. The results show that our proposed learning system is capable of extracting a set of valid motion sickness indicators that originated from EEG dynamics, and through SONFIN, a neuro-fuzzy prediction model, we successfully translated the set of motion sickness indicators into motion sickness levels. The overall performance of this proposed EEG-based learning system can achieve an average prediction accuracy of ${sim} 82%$.
机译:晕动病是许多人的常见经历。先前的几项研究表明,晕车对驾驶性能有负面影响,有时会由于个人保持自我控制的能力下降而导致严重的交通事故。这个安全问题促使我们找到一种预防车辆事故的方法。我们的目标是确定一组有效的晕车指标,以尽快预测一个人的晕车的发生。一个成功的早期发现晕车的方法将有助于我们构建认知监测系统。这种监视系统可以在人们生病之前提醒他们,并防止他们在开车或骑车时因各种晕车症状而分心。在过去的研究中,我们使用脑电图(EEG)功率谱分析研究了乘客认知状态转变过程中发生的生理变化,并且发现左,右运动,顶叶,侧枕和右脑的EEG功率反应枕中线大脑区域与主观疾病水平的相关性高于其他大脑区域。在本文中,我们建议使用自组织神经模糊推理网络(SONFIN)基于从五个与运动病相关的大脑区域在线提取的EEG特征来估计驾驶员/乘客的疾病水平或虚拟车辆环境。结果表明,我们提出的学习系统能够提取源自脑电动力学的一组有效的晕车指标,并且通过神经模糊预测模型SONFIN,我们成功地将晕车指标集转换为晕车级别。该基于EEG的学习系统的总体性能可以达到 $ {sim} 82%$

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